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Hauptverfasser: Diallo, Alpha, Garbinato, Benoit
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2501.05129
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author Diallo, Alpha
Garbinato, Benoit
author_facet Diallo, Alpha
Garbinato, Benoit
contents In recent years, we have observed a growing interest in Indoor Tracking Systems (ITS) for providing location-based services indoors. This is due to the limitations of Global Navigation and Satellite Systems, which do not operate in non-line-of-sight environments. Depending on their architecture, ITS can rely on expensive infrastructure, accumulate errors, or be challenging to evaluate in real-life environments. Building an ITS is a complex process that involves devising, evaluating and fine-tuning tracking algorithms. This process is not yet standard, as researchers use different types of equipment, deployment environments, and evaluation metrics. Therefore, it is challenging for researchers to build novel tracking algorithms and for the research community to reproduce the experiments. To address these challenges, we propose MobiXIM, a framework that provides a set of tools for devising, evaluating and fine-tuning tracking algorithms in a structured manner. For devising tracking algorithms, MobiXIM introduces a novel plugin architecture, allowing researchers to collaborate and extend existing algorithms. We assess our framework by building an ITS encompassing the key elements of wireless, inertial, and collaborative ITS. The proposed ITS achieves a positioning accuracy of 4 m, which is an improvement of up to 33% compared to a baseline Pedestrian Dead Reckoning algorithm.
format Preprint
id arxiv_https___arxiv_org_abs_2501_05129
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Framework for Devising, Evaluating and Fine-tuning Indoor Tracking Algorithms
Diallo, Alpha
Garbinato, Benoit
Software Engineering
In recent years, we have observed a growing interest in Indoor Tracking Systems (ITS) for providing location-based services indoors. This is due to the limitations of Global Navigation and Satellite Systems, which do not operate in non-line-of-sight environments. Depending on their architecture, ITS can rely on expensive infrastructure, accumulate errors, or be challenging to evaluate in real-life environments. Building an ITS is a complex process that involves devising, evaluating and fine-tuning tracking algorithms. This process is not yet standard, as researchers use different types of equipment, deployment environments, and evaluation metrics. Therefore, it is challenging for researchers to build novel tracking algorithms and for the research community to reproduce the experiments. To address these challenges, we propose MobiXIM, a framework that provides a set of tools for devising, evaluating and fine-tuning tracking algorithms in a structured manner. For devising tracking algorithms, MobiXIM introduces a novel plugin architecture, allowing researchers to collaborate and extend existing algorithms. We assess our framework by building an ITS encompassing the key elements of wireless, inertial, and collaborative ITS. The proposed ITS achieves a positioning accuracy of 4 m, which is an improvement of up to 33% compared to a baseline Pedestrian Dead Reckoning algorithm.
title A Framework for Devising, Evaluating and Fine-tuning Indoor Tracking Algorithms
topic Software Engineering
url https://arxiv.org/abs/2501.05129